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Structural Similarity Based Anatomical and Functional Brain Imaging Fusion

机译:基于结构相似性的解剖和功能性脑成像融合

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摘要

Multimodal medical image fusion helps in combining contrasting features from two or more input imaging modalities to represent fused information in a single image. One of the pivotal clinical applications of medical image fusion is the merging of anatomical and functional modalities for fast diagnosis of malign tissues. In this paper, we present a novel end-to-end unsupervised learning based Convolutional neural network (CNN) for fusing the high and low frequency components of MRI-PET grayscale image pairs publicly available at ADNI by exploiting Structural Similarity Index (SSIM) as the loss function during training. We then apply color coding for the visualization of the fused image by quantifying the contribution of each input image in terms of the partial derivatives of the fused image. We find that our fusion and visualization approach results in better visual perception of the fused image, while also comparing favorably to previous methods when applying various quantitative assessment metrics.
机译:多峰医学图像融合有助于将来自两个或多个输入成像模态的对比特征进行组合,以在单个图像中表示融合信息。医学图像融合的关键临床应用之一是快速诊断恶性组织的解剖和功能模式的融合。在本文中,我们提出了一种新颖的基于端到端无监督学习的卷积神经网络(CNN),用于通过利用结构相似指数(SSIM)作为ADNI公开提供的MRI-PET灰度图像对的高频和低频分量进行融合训练过程中的损失功能。然后,我们通过根据融合图像的偏导数量化每个输入图像的贡献,对融合图像的可视化应用颜色编码。我们发现,我们的融合和可视化方法可以更好地感知融合图像,同时在应用各种定量评估指标时与以前的方法相比也具有优势。

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